Multi-Task Lung Nodule Detection in Chest Radiographs with a Dual Head Network
About
Lung nodules can be an alarming precursor to potential lung cancer. Missed nodule detections during chest radiograph analysis remains a common challenge among thoracic radiologists. In this work, we present a multi-task lung nodule detection algorithm for chest radiograph analysis. Unlike past approaches, our algorithm predicts a global-level label indicating nodule presence along with local-level labels predicting nodule locations using a Dual Head Network (DHN). We demonstrate the favorable nodule detection performance that our multi-task formulation yields in comparison to conventional methods. In addition, we introduce a novel Dual Head Augmentation (DHA) strategy tailored for DHN, and we demonstrate its significance in further enhancing global and local nodule predictions.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Chest X-ray classification | NIH (test) | -- | 14 | |
| Localization | NIH Chest X-Ray subset (test) | FROC-AUC62.8 | 4 |